Search Results for author: Tommaso Melodia

Found 22 papers, 6 papers with code

Securing O-RAN Open Interfaces

no code implementations23 Apr 2024 Joshua Groen, Salvatore D'Oro, Utku Demir, Leonardo Bonati, Davide Villa, Michele Polese, Tommaso Melodia, Kaushik Chowdhury

The next generation of cellular networks will be characterized by openness, intelligence, virtualization, and distributed computing.

Distributed Computing

SeizNet: An AI-enabled Implantable Sensor Network System for Seizure Prediction

no code implementations12 Jan 2024 Ali Saeizadeh, Douglas Schonholtz, Daniel Uvaydov, Raffaele Guida, Emrecan Demirors, Pedram Johari, Jorge M. Jimenez, Joseph S. Neimat, Tommaso Melodia

In this paper, we introduce SeizNet, a closed-loop system for predicting epileptic seizures through the use of Deep Learning (DL) method and implantable sensor networks.

Seizure prediction Specificity

Modeling Interference for the Coexistence of 6G Networks and Passive Sensing Systems

no code implementations27 Jul 2023 Paolo Testolina, Michele Polese, Josep M. Jornet, Tommaso Melodia, Michele Zorzi

In this paper, we provide the first, fundamental analysis of Radio Frequency Interference (RFI) that large-scale terrestrial deployments introduce in different satellite sensing systems now orbiting the Earth.

Astronomy

SignCRF: Scalable Channel-agnostic Data-driven Radio Authentication System

no code implementations21 Mar 2023 Amani Al-shawabka, Philip Pietraski, Sudhir B Pattar, Pedram Johari, Tommaso Melodia

Radio Frequency Fingerprinting through Deep Learning (RFFDL) is a data-driven IoT authentication technique that leverages the unique hardware-level manufacturing imperfections associated with a particular device to recognize (fingerprint) the device based on variations introduced in the transmitted waveform.

Programmable and Customized Intelligence for Traffic Steering in 5G Networks Using Open RAN Architectures

2 code implementations28 Sep 2022 Andrea Lacava, Michele Polese, Rajarajan Sivaraj, Rahul Soundrarajan, Bhawani Shanker Bhati, Tarunjeet Singh, Tommaso Zugno, Francesca Cuomo, Tommaso Melodia

This is obtained through custom RAN control applications (i. e., xApps) deployed on near-real-time RAN Intelligent Controller (near-RT RIC) at the edge of the network.

Intelligent Closed-loop RAN Control with xApps in OpenRAN Gym

no code implementations31 Aug 2022 Leonardo Bonati, Michele Polese, Salvatore D'Oro, Stefano Basagni, Tommaso Melodia

Softwarization, programmable network control and the use of all-encompassing controllers acting at different timescales are heralded as the key drivers for the evolution to next-generation cellular networks.

Terahertz Communications Can Work in Rain and Snow: Impact of Adverse Weather Conditions on Channels at 140 GHz

no code implementations29 Aug 2022 Priyangshu Sen, Jacob Hall, Michele Polese, Vitaly Petrov, Duschia Bodet, Francesco Restuccia, Tommaso Melodia, Josep M. Jornet

Next-generation wireless networks will leverage the spectrum above 100 GHz to enable ultra-high data rate communications over multi-GHz-wide bandwidths.

OpenRAN Gym: AI/ML Development, Data Collection, and Testing for O-RAN on PAWR Platforms

1 code implementation25 Jul 2022 Leonardo Bonati, Michele Polese, Salvatore D'Oro, Stefano Basagni, Tommaso Melodia

In this paper we present OpenRAN Gym, a unified, open, and O-RAN-compliant experimental toolbox for data collection, design, prototyping and testing of end-to-end data-driven control solutions for next generation Open RAN systems.

Neural Network-based OFDM Receiver for Resource Constrained IoT Devices

no code implementations12 May 2022 Nasim Soltani, Hai Cheng, Mauro Belgiovine, Yanyu Li, Haoqing Li, Bahar Azari, Salvatore D'Oro, Tales Imbiriba, Tommaso Melodia, Pau Closas, Yanzhi Wang, Deniz Erdogmus, Kaushik Chowdhury

Here, ML blocks replace the individual processing blocks of an OFDM receiver, and we specifically describe this swapping for the legacy channel estimation, symbol demapping, and decoding blocks with Neural Networks (NNs).

Quantization

Deep neural network goes lighter: A case study of deep compression techniques on automatic RF modulation recognition for Beyond 5G networks

no code implementations9 Apr 2022 Anu Jagannath, Jithin Jagannath, Yanzhi Wang, Tommaso Melodia

Automatic RF modulation recognition is a primary signal intelligence (SIGINT) technique that serves as a physical layer authentication enabler and automated signal processing scheme for the beyond 5G and military networks.

OrchestRAN: Network Automation through Orchestrated Intelligence in the Open RAN

no code implementations14 Jan 2022 Salvatore D'Oro, Leonardo Bonati, Michele Polese, Tommaso Melodia

The next generation of cellular networks will be characterized by softwarized, open, and disaggregated architectures exposing analytics and control knobs to enable network intelligence.

Scheduling

ColO-RAN: Developing Machine Learning-based xApps for Open RAN Closed-loop Control on Programmable Experimental Platforms

1 code implementation17 Dec 2021 Michele Polese, Leonardo Bonati, Salvatore D'Oro, Stefano Basagni, Tommaso Melodia

In this paper, we address these challenges by proposing practical solutions and software pipelines for the design, training, testing, and experimental evaluation of DRL-based closed-loop control in the Open RAN.

Scheduling

Can You Fix My Neural Network? Real-Time Adaptive Waveform Synthesis for Resilient Wireless Signal Classification

no code implementations5 Mar 2021 Salvatore D'Oro, Francesco Restuccia, Tommaso Melodia

Results show that Chares increases the accuracy up to 4. 1x when no waveform synthesis is performed, by 1. 9x with respect to existing work, and can compute new actions within 41us.

SteaLTE: Private 5G Cellular Connectivity as a Service with Full-stack Wireless Steganography

no code implementations10 Feb 2021 Leonardo Bonati, Salvatore D'Oro, Francesco Restuccia, Stefano Basagni, Tommaso Melodia

Differently from previous work, however, it takes a full-stack approach to steganography, contributing an LTE-compliant steganographic protocol stack for PCCaaS-based communications, and packet schedulers and operations to embed covert data streams on top of traditional cellular traffic (primary traffic).

Networking and Internet Architecture Cryptography and Security

Streaming from the Air: Enabling Drone-sourced Video Streaming Applications on 5G Open-RAN Architectures

no code implementations21 Jan 2021 Lorenzo Bertizzolo, Tuyen X. Tran, John Buczek, Bharath Balasubramanian, Rittwik Jana, Yu Zhou, Tommaso Melodia

This may result in uplink inter-cell interference and uplink performance degradation for the neighboring ground UEs when drones transmit at high data-rates (e. g., video streaming).

Networking and Internet Architecture Signal Processing

DeepBeam: Deep Waveform Learning for Coordination-Free Beam Management in mmWave Networks

1 code implementation28 Dec 2020 Michele Polese, Francesco Restuccia, Tommaso Melodia

To do so, existing solutions mostly rely on explicit coordination between the transmitter (TX) and the receiver (RX), which significantly reduces the airtime available for communication and further complicates the network protocol design.

Networking and Internet Architecture Information Theory Information Theory

Intelligence and Learning in O-RAN for Data-driven NextG Cellular Networks

1 code implementation2 Dec 2020 Leonardo Bonati, Salvatore D'Oro, Michele Polese, Stefano Basagni, Tommaso Melodia

Next Generation (NextG) cellular networks will be natively cloud-based and built upon programmable, virtualized, and disaggregated architectures.

Scheduling

Toward End-to-End, Full-Stack 6G Terahertz Networks

1 code implementation16 May 2020 Michele Polese, Josep Jornet, Tommaso Melodia, Michele Zorzi

Recent evolutions in semiconductors have brought the terahertz band in the spotlight as an enabler for terabit-per-second communications in 6G networks.

Networking and Internet Architecture Signal Processing

Redefining Wireless Communication for 6G: Signal Processing Meets Deep Learning with Deep Unfolding

no code implementations22 Apr 2020 Anu Jagannath, Jithin Jagannath, Tommaso Melodia

In this position paper, we motivate the need to redesign iterative signal processing algorithms by leveraging deep unfolding techniques to fulfill the physical layer requirements for 6G networks.

Big Data Goes Small: Real-Time Spectrum-Driven Embedded Wireless Networking Through Deep Learning in the RF Loop

no code implementations12 Mar 2019 Francesco Restuccia, Tommaso Melodia

RFLearn provides (i) a complete hardware/software architecture where the CPU, radio transceiver and learning/actuation circuits are tightly connected for maximum performance; and (ii) a learning circuit design framework where the latency vs. hardware resource consumption trade-off can explored.

Machine Learning for Wireless Communications in the Internet of Things: A Comprehensive Survey

no code implementations23 Jan 2019 Jithin Jagannath, Nicholas Polosky, Anu Jagannath, Francesco Restuccia, Tommaso Melodia

The Internet of Things (IoT) is expected to require more effective and efficient wireless communications than ever before.

Networking and Internet Architecture

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